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A study on intelligent translation of English sentences by a semantic feature extractor 语义特征提取器对英语句子智能翻译的研究
Pub Date : 2024-01-01 DOI: 10.1515/jisys-2023-0113
Shulun Jiang
In order to enhance the performance of machine translation, this article briefly introduced algorithms that can be used to extract semantic feature vectors. Then, the aforementioned algorithms were integrated with the encoder–decoder translation algorithm, and the resulting algorithms were subsequently tested. First, the performance of the semantic recognition of the long short-term memory (LSTM)-based semantic feature extractor was tested, followed by a comparison with the translation algorithm that does not include semantic features, as well as the translation algorithm that incorporates convolutional neural network-extracted semantic features. The findings demonstrated that the LSTM-based semantic feature extractor accurately identified the semantics of the source language. The proposed translation algorithm, which is based on LSTM semantic features, achieved more accurate translations compared to the other two algorithms. Furthermore, it was less affected by the length of the source language.
为了提高机器翻译的性能,本文简要介绍了可用于提取语义特征向量的算法。然后,将上述算法与编码器-解码器翻译算法进行了整合,并对整合后的算法进行了测试。首先,测试了基于长短期记忆(LSTM)的语义特征提取器的语义识别性能,然后与不包含语义特征的翻译算法以及包含卷积神经网络提取的语义特征的翻译算法进行了比较。结果表明,基于 LSTM 的语义特征提取器能准确识别源语言的语义。与其他两种算法相比,基于 LSTM 语义特征的拟议翻译算法实现了更准确的翻译。此外,它受源语言长度的影响较小。
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引用次数: 0
Analysis of youth sports physical health data based on cloud computing and gait awareness 基于云计算和步态感知的青少年运动体质健康数据分析
Pub Date : 2024-01-01 DOI: 10.1515/jisys-2023-0155
Haidong Jiang
Sub-health problems are becoming increasingly serious in today’s society, and some organizations are not paying enough attention to adolescent sports health data. For adolescent sports, health needs to be measured regularly and tested constantly so that the intake of diet and medication can be reasonably adjusted according to their biochemical indicators. The Smart Health Life Growth Cloud System can effectively manage residents’ health data digitally and informally, enabling users to manage their health data better and facilitating doctors to keep abreast of users’ health conditions, while also facilitating the government to conduct research and studies on the physical fitness of adolescents in the areas under its jurisdiction. The cloud-based management platform for student physical health management relies on the mobile internet as a practical service platform whose primary role is to provide young people with a convenient sporting life, focusing on practicality, service, and interactivity. We also collect sensor data to detect gait patterns (with or without leg contact) and filter them through an adaptive hybrid filter to differentiate between the two patterns. In turn, the Smart Health Life Growth Cloud system changes the traditional medical model and greatly improves the information and intelligence of the healthcare industry. Using the exercise individual health evaluation model in this article is controlled to be within 20%, thus concluding that the exercise individual health evaluation model proposed in this article can predict the exercise limit of an exercise individual more accurately.
当今社会亚健康问题日益严重,一些单位对青少年体育健康数据重视不够。对于青少年运动来说,健康需要定期测量,不断检测,才能根据其生化指标合理调整饮食和药物的摄入。智慧健康生命成长云系统可以有效地对居民的健康数据进行数字化、信息化管理,让用户更好地管理自己的健康数据,方便医生及时了解用户的健康状况,同时也方便政府对所辖区域的青少年体质进行调查研究。基于云计算的学生体质健康管理平台依托于移动互联网,作为一个实用的服务平台,其主要作用是为青少年提供便捷的体育生活,注重实用性、服务性和互动性。我们还通过收集传感器数据来检测步态模式(有腿部接触或无腿部接触),并通过自适应混合滤波器来区分这两种模式。反过来,智能健康生命成长云系统也改变了传统的医疗模式,大大提高了医疗行业的信息化和智能化水平。使用本文中的运动个体健康评价模型,结果控制在20%以内,由此得出结论,本文提出的运动个体健康评价模型可以较为准确地预测运动个体的运动极限。
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